储备审计软件的开发

V.O. Dulov, V.M. Khomik, O.N. Gustaia, S. Valitov
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引用次数: 0

摘要

为储量审计进行工程和经济计算的软件已经开发出来。计算过程根据公司采用的方法进行,符合SPE (PRMS)和SEC的官方指导方针。现代工具用于软件开发,包括使用最流行的编程语言之一,知名库和机器学习工具。
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Development of Software for Reserves` Audit
Summary The software that performs engineering and economic calculations for reserves' audit has been developed. The calculation process is carried out according to the methodology adopted by the company and meets the official guidelines of SPE (PRMS) and SEC. Modern tools were used for development of the software, including the use of one of the most popular programming languages, well-known libraries and machine learning tools.
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